Classical false discovery rate (FDR) controlling procedures offer strong and interpretable guarantees, while they often lack of flexibility. On the other hand, recent machine learning classification algorithms, as those based on random forest (RF) or neural networks (NN), have great practical performa...
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Robust machine learning typically refers to the robustness of machine learning algorithms. For a machine learning algorithm to be considered robust, either the testing error has to be consistent with the training error, or the performance is stable after adding some noise to the dataset. This repo...
DEGs (differentially expressed genes) between distinct PANoptosis related molecular patterns were determined by |log2 FC (fold change) |> 1.5 and FDR (false discovery rate) adjusted p values < 0.05 via limma package in R software46. Univariate cox regression analysis was applied to select ...
(AI), particularly,machine learning (ML)is the key. Various types of machine learning algorithms such as supervised, unsupervised, semi-supervised, and reinforcement learning exist in the area. Besides, thedeep learning, which is part of a broader family of machine learning methods, can ...
Abbreviations: AdaBoost, Adaptive Boosting; SVM, support vector machines; KNN, k-nearest neighbor; TN, true negative; FN, false negative; TP, true positive; FP, false positive; AUC, area under the curve. Subsequently, we used our trained diagnostic machine learning models to classify the test...
Machine learning is a broad term encompassing a number of methods that allow the investigator to learn from the data. These methods may permit large real-world databases to be more rapidly translated to applications to inform patient-provider decision making. Methods This systematic literature review...
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A deep learning-based method shows promise in issuing early warnings of rate-induced tipping, of particular interest in anticipating effects due to anthropogenic climate change. Smita Deb Partha Sharathi Dutta News & Views04 Dec 2024 AI in biomaterials discovery: generating self-assembling peptides ...
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